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Corpus Concordance Analysis×Keyness Analysis×
FagområdeLingvistikLingvistik
FamilieProcess / pipelineProcess / pipeline
Oprindelsesår19911997
OphavspersonCorpus linguists (John Sinclair; Paul Baker)Mike Scott
TypeCorpus-based descriptive analysis of word usage in contextCorpus comparison of relative word frequencies
Oprindelig kildeBaker, P. (2006). Using Corpora in Discourse Analysis. Continuum. ISBN: 9780826477248Scott, M. (1997). PC analysis of key words — and key key words. System, 25(2), 233–245. DOI ↗
AliasserConcordance Analysis, KWIC Analysis, Keyword-in-Context AnalysisKeyword Analysis, Corpus Keyness, Keyness Statistics
Relaterede43
ResuméCorpus concordance analysis is a core corpus-linguistic technique that retrieves every occurrence of a search word or phrase from a large body of machine-readable text and displays them in keyword-in-context (KWIC) format — the target term aligned in a central column with its surrounding co-text. By reading and sorting these lines, analysts uncover the recurrent patterns, collocations, and meanings of words as they are actually used, grounding linguistic claims in attested evidence rather than introspection.Keyness analysis identifies the words that are characteristically frequent (or infrequent) in a target corpus relative to a reference corpus, using statistical tests to measure how unexpected each word's frequency is. Introduced by Mike Scott in 1997, it answers the question 'what is this text or collection distinctively about?' and is a central technique in corpus linguistics and corpus-assisted discourse analysis for surfacing the salient vocabulary of a genre, period, author, or social group.
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ScholarGateSammenlign metoder: Corpus Concordance Analysis · Keyness Analysis. Hentet 2026-06-24 fra https://scholargate.app/da/compare